基于混合关注网络的大规模内容推荐多视图学习模型

Ge Fan, Chaoyun Zhang, Kai Wang, Junyang Chen
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引用次数: 1

摘要

工业推荐系统通常采用多源数据来提高推荐质量,而在不同数据源之间有效地共享信息仍然是一个挑战。本文提出了一种基于混合关注网络(MV-HAN)的多视图方法,用于推荐系统匹配阶段的内容检索。该模型能够实现不同输入特征之间的高阶特征交互,同时有效地在不同类型之间传递知识。通过采用位置合理的参数共享策略,MV-HAN大幅度提高了稀疏类型下的检索性能。设计的MV-HAN继承了双塔模式在线服务的效率优势,将不同类型的用户和内容映射到相同的特征空间中。这允许使用近似最近邻算法快速检索相似的内容。我们在几个工业数据集上进行了离线实验,证明了所提出的MV-HAN在内容检索任务上显著优于基线。重要的是,MV-HAN部署在现实世界的匹配系统中。在线A/B测试结果表明,该方法可以显著提高推荐质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MV-HAN: A Hybrid Attentive Networks based Multi-View Learning Model for Large-scale Contents Recommendation
Industrial recommender systems usually employ multi-source data to improve the recommendation quality, while effectively sharing information between different data sources remain a challenge. In this paper, we introduce a novel Multi-View Approach with Hybrid Attentive Networks (MV-HAN) for contents retrieval at the matching stage of recommender systems. The proposed model enables high-order feature interaction from various input features while effectively transferring knowledge between different types. By employing a well-placed parameters sharing strategy, the MV-HAN substantially improves the retrieval performance in sparse types. The designed MV-HAN inherits the efficiency advantages in the online service from the two-tower model, by mapping users and contents of different types into the same features space. This enables fast retrieval of similar contents with an approximate nearest neighbor algorithm. We conduct offline experiments on several industrial datasets, demonstrating that the proposed MV-HAN significantly outperforms baselines on the content retrieval tasks. Importantly, the MV-HAN is deployed in a real-world matching system. Online A/B test results show that the proposed method can significantly improve the quality of recommendations.
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